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Beef Cattle Instance Segmentation Using Fully Convolutional Neural Network

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Figure

Figure 1: Flowchart of the dataset construction and naive segmentation pipeline. RCF isRicher Convolutional Features CNN from [13], ISODATA is a threshold function from [16]
Figure 2: MaskSplitter framework architecture. FCN denotes the Fully Convolutional Net-work, L2 is Euclidean loss layer
Figure 3: Illustration of Mask R-CNN, FCIS, FCN8s+MaskSplitter performance on MSCOCO and Pascal VOC validation datasets
Table 3: Results on our test dataset (before finetuning)

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